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Defect Recognition of Metal Magnetic Memory Testing Based on Improved Fuzzy Support Vector Machine |
ZHU Hong-yun,WANG Chang-long,WANG Jian-bin,LIU Bing |
Department of Electrical Engineering, Ordnance Engineering College, Shijiazhuang, Hebei 050003, China |
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Abstract Since the metal magnetic memory (MMM) signal is weak and the defects can’t be recognized effectively, a novel fuzzy support vector machine(FSVM) is proposed. In order to reduce the influence of isolation point and noise on classification accuracy, the?k?nearest neighbor dispersion is constructed based on the traditional determination method of the fuzzy membership. Besides, the feature weighted degree of each feature is calculated to reduce the influence of redundant and weak features on classification accuracy. And then the proposed approach is applied to recognize MMM signals of different areas, the experimental results show that the proposed approach can recognize this MMM signals effectively,it is more robust and has the better performance of recognition. The proposed FSVM approach is a feasible recognition algorithm for MMM signals of different areas.
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[1]Roskosz M. Metal magnetic memory testing of welded joints of ferritic and austenitic steels[J]. NDT & E International, 2011,44(3):305-310.
[2]Surkov Y P, Gorchakov V A, Sadtrdinov R A, et al. Magnetic testing techniques used to analyze gas pipeline tubes[J]. Russian Journal of Nodestructive Testing, 2005, 41(9):602-608.
[3]易方,李著信,吕宏庆,等.基于模糊核支持向量机的管道磁记忆检测缺陷识别[J].石油学报,2010,31(5):863-866.
[4]Chun-Fu Lin , Sheng-De Wang . Fuzzy support vector machines[J].IEEE Transactions On Neural Networks, 2002,13(2):464-471.
[5]艾延廷,费成巍,王志. 基于改进模糊SVM的转子振动故障诊断技术[J]. 航空动力学报, 2011,26(5):1118-1123.
[6]栾英宏,李跃华.基于模糊支持向量机的一维距离像识别[J].南京理工大学学报,2009,33(3):375-378.
[7]胡正平.基于模糊K近邻决策的柔性SVM分类算法[J].仪器仪表学报,2005,26(8):384-386.
[8]李京华,张聪颖,倪宁.基于参数优化的支持向量机战场多目标声识别[J].探测与控制学报, 2010,32(1):1-5.
[9]顾成杰,张顺颐.基于改进SVM的网络流量分类方法研究[J].仪器仪表学报,2011,32(7):1507-1513 |
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